基于非平稳生理数据的影响检测与分类

Omar Alzoubi, Davide Fossati, S. D’Mello, R. Calvo
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引用次数: 5

摘要

基于生理信号的情感检测近年来受到了广泛的关注。一个出现的挑战是,在多天/次的记录中,生理测量预计会表现出相当大的变化或非平稳性。这些变化对从未来生理数据中有效分类情感状态提出了挑战。本研究收集了四名参与者在五个疗程中的情感生理数据(心电图(ECG)、肌电图(EMG)、皮肤电导率(SC)和呼吸(RSP))。该研究提供了关于情感的诊断生理特征如何随时间变化的见解。我们比较了两个特征集的分类性能,池特征(从池化的日期数据中获得)和使用up数据分类器集成算法的特定日期特征。本研究还分析了情感检测中个体生理通道的性能。我们的研究结果表明,使用混合特征集进行情感检测比使用特定日期的特征更准确。与ECG、RSP和SC相比,在多时段的记录中,瓦楞纸肌和颧骨肌电图是检测价电位比觉醒更可靠的方法。研究还发现,波纹肌肌电特征和所有生理通道特征的融合对效价和觉醒的检测精度都有最高的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Affect Detection and Classification from the Non-stationary Physiological Data
Affect detection from physiological signals has received a great deal of attention recently. One arising challenge is that physiological measures are expected to exhibit considerable variations or non-stationarities over multiple days/sessions recordings. These variations pose challenges to effectively classify affective sates from future physiological data. The present study collects affective physiological data (electrocardiogram (ECG), electromyogram (EMG), skin conductivity (SC), and respiration (RSP)) from four participants over five sessions each. The study provides insights on how diagnostic physiological features of affect change over time. We compare the classification performance of two feature sets, pooled features (obtained from pooled day data) and day-specific features using an up datable classifier ensemble algorithm. The study also provides an analysis on the performance of individual physiological channels for affect detection. Our results show that using pooled feature set for affect detection is more accurate than using day-specific features. The corrugator and zygomatic facial EMGs were more reliable measures for detecting valence than arousal compared to ECG, RSP and SC over the span of multi-session recordings. It is also found that corrugator EMG features and a fusion of features from all physiological channels have the highest affect detection accuracy for both valence and arousal.
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